Intelligent Co-Design: An Interactive LLM Framework for Interior Spatial Design via Multi-Modal Agents
arXiv cs.AI / 3/17/2026
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Key Points
- The paper presents an LLM-based, multimodal, multi-agent framework that converts natural language descriptions and imagery into optimized 3D indoor designs.
- Specialized agents (Reference, Spatial, Interactive, Grader) coordinate via prompts to enable real-time, participatory spatial refinement.
- Retrieval-Augmented Generation reduces data dependency and eliminates the need for task-specific model training.
- Evaluations show an independent LLM evaluator rated participatory layouts higher in alignment, aesthetics, functionality, and circulation across diverse floor plans.
- User studies reported 77% satisfaction and a clear preference for the framework over traditional design software, indicating improved user-centric communication.
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